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首页> 外文期刊>SIAM journal on applied dynamical systems >Linearly Recurrent Autoencoder Networks for Learning Dynamics
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Linearly Recurrent Autoencoder Networks for Learning Dynamics

机译:用于学习动态的线性复发性自动化网络

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摘要

This paper describes a method for learning low-dimensional approximations of nonlinear dynamical systems, based on neural network approximations of the underlying Koopman operator. Extended Dynamic Mode Decomposition (EDMD) provides a useful data-driven approximation of the Koopman operator for analyzing dynamical systems. This paper addresses a fundamental problem associated with EDMD: a trade-off between representational capacity of the dictionary and overfitting due to insufficient data. A new neural network architecture combining an autoencoder with linear recurrent dynamics in the encoded state is used to learn a low-dimensional and highly informative Koopman-invariant subspace of observables. A method is also presented for balanced model reduction of overspecified EDMD systems in feature space. Nonlinear reconstruction using partially linear multikernel regression aims to improve reconstruction accuracy from the low-dimensional state when the data has complex but intrinsically low-dimensional structure. The techniques demonstrate the ability to identify Koopman eigenfunctions of the unforced Duffing equation, create accurate low-dimensional models of an unstable cylinder wake flow, and make short-time predictions of the chaotic Kuramoto-Sivashinsky equation.
机译:本文介绍了一种基于底层Koopman操作员的神经网络近似来学习非线性动力系统的低维近似的方法。扩展动态模式分解(EDMD)提供了Koopman运算符的有用数据驱动近似,用于分析动态系统。本文讨论了与EDMD相关的基本问题:由于数据不足,字典的代表能力与过度装备之间的权衡。将具有编码状态下线性反复动态的AutoEncoder组合的新神经网络架构用于学习低维和高度非信息的Koopman-Funariant Absual空间。还提供了一种方法,用于在特征空间中的超薄EDMD系统的平衡模型减少。非线性重建使用部分线性多时钟回归旨在改善当数据具有复杂而且本质上的低维结构时从低维状态的重建精度。该技术展示了识别未稳定的Duffing方程的Koopman特征功能的能力,创造了不稳定气缸唤醒流动的准确的低维模型,并制造了混沌Kuramoto-Sivashinsky方程的短时间预测。

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